Modified deep autoencoder driven by multisource parameters for fault transfer prognosis of aeroengine

Zhiyi He, Haidong Shao, Ziyang Ding, Hongkai Jiang, Junsheng Cheng

Research output: Contribution to journalArticlepeer-review

149 Scopus citations

Abstract

The existing fault prognosis techniques of aeroengine mostly focus on a single monitoring parameter under stable condition, and have low adaptability to new prognosis scenes. To boost the fault prognosis capability cross aeroengines, modified deep autoencoder (MDAE) driven by multi-source parameters is proposed in this article. First, the sensitive multi-source parameters are selected and fused using linear local tangent space alignment to define a fused health index (FHI) to characterize performance degradation of aeroengine. Second, MDAE model is constructed with adaptive Morlet wavelet to flexibly establish accurate mapping hidden in the FHI under analysis. Third, parameter transfer learning is used to provide good initial parameters for enabling the constructed MDAE to have cross-domain fault prognosis capability. The proposed method is used to analyze both the simulation multisource performance degradation parameters of aeroengines (system level) and experiment run-to-failure bearing datasets (component level). The results confirm the feasibility of the proposed method in cross-domain fault prognosis of aeroengines, which outperforms the existing methods.

Original languageEnglish
Pages (from-to)845-855
Number of pages11
JournalIEEE Transactions on Industrial Electronics
Volume69
Issue number1
DOIs
StatePublished - 1 Jan 2022

Keywords

  • Aeroengine
  • Fault prognosis
  • Modified deep autoencoder (MDAE)
  • Multisource parameters
  • Parameter transfer

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